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Глоссарий клинического ИИ.

Определения CDS, medical LLM, RAG, hallucination, prompt injection и evidence-based AI.

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Глоссарий клинического ИИ.: Определения CDS, medical LLM, RAG, hallucination, prompt injection и evidence-based AI. Эта страница служит отправной точкой для быстрого сравнения релевантных вариантов перед чтением подробных обзоров.

Источник: Clinical AI Report

Многие термины остаются на английском; определения объясняют их клинический смысл.

Prompt injection в медицинском ИИ

Prompt injection is a security vulnerability in AI systems where malicious or misleading input causes the model to ignore its intended instructions and generate unintended, potentially harmful output. In medical AI, this risk is particularly serious because it could lead to incorrect clinical recommendations.

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ИИ на основе доказательств

Evidence-based AI refers to artificial intelligence systems that ground their outputs in verifiable, peer-reviewed evidence rather than relying solely on pattern-learned associations. In clinical contexts, this means every AI-generated recommendation is linked to its original source in the medical literature.

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Медицинская LLM

A medical LLM (large language model) is an AI model trained or fine-tuned specifically for medical and clinical applications. Medical LLMs are designed to understand clinical terminology, reason about patient presentations, and generate evidence-informed medical text.

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DoxGPT

DoxGPT is Doximity's AI-powered clinical assistant built into the Doximity platform. It provides drug information, clinical summaries, and documentation assistance to physicians as part of Doximity's broader professional network for healthcare providers.

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Галлюцинация ИИ в здравоохранении

AI hallucination in healthcare occurs when an artificial intelligence model generates medical information that is factually incorrect, fabricated, or not grounded in any real evidence — yet presents it with high confidence. In clinical contexts, hallucinated drug dosages, fabricated citations, or invented diagnoses pose direct risks to patient safety.

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Ambient AI scribe

An ambient AI scribe is a clinical documentation tool that uses automatic speech recognition and natural language processing to listen to patient-physician conversations in real time and automatically generate structured clinical notes for the electronic health record.

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SMART on FHIR

SMART on FHIR (Substitutable Medical Applications, Reusable Technologies on Fast Healthcare Interoperability Resources) is an open standard that enables third-party healthcare applications — including clinical AI tools — to securely connect to electronic health record systems and exchange patient data.

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Дифференциальная диагностика с ИИ

AI differential diagnosis refers to the use of artificial intelligence to generate a ranked list of possible diagnoses from a patient's clinical presentation — including symptoms, lab values, imaging findings, and medical history. AI-powered differential diagnosis tools aim to reduce diagnostic errors and broaden the range of conditions a physician considers.

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Клиническая валидация ИИ

AI clinical validation is the process of testing an artificial intelligence medical tool against real-world clinical scenarios, established benchmarks, and peer-reviewed evidence to demonstrate that it produces accurate, safe, and clinically useful output for healthcare professionals.

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NLP в медицине

Natural language processing (NLP) in medicine is the branch of artificial intelligence that enables computers to understand, interpret, and generate human language in clinical contexts — powering applications from clinical documentation to medical literature search to conversational clinical decision support.

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Стратификация риска с ИИ

AI-powered risk stratification uses artificial intelligence to analyze patient data and assign risk scores that predict the likelihood of clinical outcomes — such as hospital readmission, disease progression, adverse events, or treatment response — enabling physicians to prioritize interventions for higher-risk patients.

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